Abstract

IntroductionAge-mixing patterns can have substantial effects on infectious disease dynamics and intervention effects. Data on close contacts (people spoken to and/or touched) are often used to estimate age-mixing. These are not the only relevant contacts for airborne infections such as tuberculosis, where transmission can occur between anybody ‘sharing air’ indoors. Directly collecting data on age-mixing patterns between casual contacts (shared indoor space, but not ‘close’) is difficult however. We demonstrate a method for indirectly estimating age-mixing patterns between casual indoor contacts from social contact data. MethodsWe estimated age-mixing patterns between close, casual, and all contacts using data from a social contact survey in South Africa. The age distribution of casual contacts in different types of location was estimated from the reported time spent in the location type by respondents in each age group. ResultsPatterns of age-mixing calculated from contact numbers were similar between close and all contacts, however patterns of age-mixing calculated from contact time were more age-assortative in all contacts than in close contacts. There was also more variation by age group in total numbers of casual and all contacts, than in total numbers of close contacts. Estimates were robust to sensitivity analyses. ConclusionsPatterns of age-mixing can be estimated for all contacts using data that can be easily collected as part of social contact surveys or time-use surveys, and may differ from patterns between close contacts.

Highlights

  • Age-mixing patterns can have substantial effects on infectious disease dynamics and intervention effects

  • We demonstrate an indirect method of estimating agemixing patterns among casual contacts, using data that can be collected as part of social contact or time-use surveys

  • As for contact numbers, contact patterns based on contact time were highly age assortative for close, casual, and all contacts, and the highest contact times were found between 5–9 year olds, 10–14 year olds, and 15–20 year olds within their own age groups

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Summary

Introduction

Differential patterns of contact between different age groups in a population can have a range of important effects on infection and disease dynamics. Arregui et al (2018) demonstrated that simulating patterns of age-mixing alters patterns of Mycobacterium tuberculosis (Mtb) transmission between age groups, and generates differences in age-specific incidence rates of infection and tuberculosis disease (Arregui et al, 2018). Arregui et al (2018) demonstrated that simulating patterns of age-mixing alters patterns of Mycobacterium tuberculosis (Mtb) transmission between age groups, and generates differences in age-specific incidence rates of infection and tuberculosis disease (Arregui et al, 2018) This has implications for the age targeting of vaccines or other intervention measures. We demonstrate an indirect method of estimating agemixing patterns among casual contacts, using data that can be collected as part of social contact or time-use surveys. This method requires very little additional data collection, and can generate more realistic patterns of age-mixing for use in the parameterisation of mathematical models of tuberculosis and other airborne infections

Study community
Data collection
Analysis
Sensitivity analyses
Total contact numbers
Age-mixing
Discussion
Funding source
Full Text
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